effective tip
Co-optimizing Physical Reconfiguration Parameters and Controllers for an Origami-inspired Reconfigurable Manipulator
Chen, Zhe, Chen, Li, Zhang, Hao, Zhao, Jianguo
-- Reconfigurable robots that can change their physical configuration post-fabrication have demonstrate their potential in adapting to different environments or tasks. However, it is challenging to determine how to optimally adjust reconfigurable parameters for a given task, especially when the controller depends on the robot's configuration. In this paper, we address this problem using a tendon-driven reconfigurable manipulator composed of multiple serially connected origami-inspired modules as an example. Under tendon actuation, these modules can achieve different shapes and motions, governed by joint stiffnesses (reconfiguration parameters) and the tendon displacements (control inputs). We leverage recent advances in co-optimization of design and control for robotic system to treat reconfiguration parameters as design variables and optimize them using reinforcement learning techniques. We first establish a forward model based on the minimum potential energy method to predict the shape of the manipulator under tendon actuations. Through co-optimization, we obtain optimized joint stiffness and the corresponding optimal control policy to enable the manipulator to accomplish the task that would be infeasible with fixed reconfiguration parameters (i.e., fixed joint stiffness). We envision the co-optimization framework can be extended to other reconfigurable robotic systems, enabling them to optimally adapt their configuration and behavior for diverse tasks and environments. Traditionally, the design and control of robotic systems have been treated as separate processes: a robot's physical structure is first designed, and then a controller is developed to operate it.
100% Effective Tips to get your Dream Data Science Job
Get your dream role as a Data Scientist by following this go-to guide that covers all essential end to end topics. It's the job the Harvard Business Review has called "the sexiest job of the 21st century". Over the past decade, as the tech world has seen advances in big data, machine learning, cloud computing, and artificial intelligence, opportunities for data scientists have blossomed. In addition, their compensation has blossomed as companies increasingly demand data scientists. So, how do you become a data scientist, and how do you get hired?